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  • python 简明教程 【转】

    转自:https://learnxinyminutes.com/docs/python/

    # Single line comments start with a number symbol.
    
    """ Multiline strings can be written
        using three "s, and are often used
        as comments
    """
    
    ####################################################
    # 1. Primitive Datatypes and Operators
    ####################################################
    
    # You have numbers
    3  # => 3
    
    # Math is what you would expect
    1 + 1  # => 2
    8 - 1  # => 7
    10 * 2  # => 20
    35 / 5  # => 7
    
    # Division is a bit tricky. It is integer division and floors the results
    # automatically.
    5 / 2  # => 2
    
    # To fix division we need to learn about floats.
    2.0  # This is a float
    11.0 / 4.0  # => 2.75 ahhh...much better
    
    # Result of integer division truncated down both for positive and negative.
    5 // 3  # => 1
    5.0 // 3.0  # => 1.0 # works on floats too
    -5 // 3  # => -2
    -5.0 // 3.0  # => -2.0
    
    # Note that we can also import division module(Section 6 Modules)
    # to carry out normal division with just one '/'.
    from __future__ import division
    
    11 / 4  # => 2.75  ...normal division
    11 // 4  # => 2 ...floored division
    
    # Modulo operation
    7 % 3  # => 1
    
    # Exponentiation (x to the yth power)
    2 ** 4  # => 16
    
    # Enforce precedence with parentheses
    (1 + 3) * 2  # => 8
    
    # Boolean Operators
    # Note "and" and "or" are case-sensitive
    True and False  # => False
    False or True  # => True
    
    # Note using Bool operators with ints
    0 and 2  # => 0
    -5 or 0  # => -5
    0 == False  # => True
    2 == True  # => False
    1 == True  # => True
    
    # negate with not
    not True  # => False
    not False  # => True
    
    # Equality is ==
    1 == 1  # => True
    2 == 1  # => False
    
    # Inequality is !=
    1 != 1  # => False
    2 != 1  # => True
    
    # More comparisons
    1 < 10  # => True
    1 > 10  # => False
    2 <= 2  # => True
    2 >= 2  # => True
    
    # Comparisons can be chained!
    1 < 2 < 3  # => True
    2 < 3 < 2  # => False
    
    # Strings are created with " or '
    "This is a string."
    'This is also a string.'
    
    # Strings can be added too!
    "Hello " + "world!"  # => "Hello world!"
    # Strings can be added without using '+'
    "Hello " "world!"  # => "Hello world!"
    
    # ... or multiplied
    "Hello" * 3  # => "HelloHelloHello"
    
    # A string can be treated like a list of characters
    "This is a string"[0]  # => 'T'
    
    # You can find the length of a string
    len("This is a string")  # => 16
    
    # String formatting with %
    # Even though the % string operator will be deprecated on Python 3.1 and removed
    # later at some time, it may still be good to know how it works.
    x = 'apple'
    y = 'lemon'
    z = "The items in the basket are %s and %s" % (x, y)
    
    # A newer way to format strings is the format method.
    # This method is the preferred way
    "{} is a {}".format("This", "placeholder")
    "{0} can be {1}".format("strings", "formatted")
    # You can use keywords if you don't want to count.
    "{name} wants to eat {food}".format(name="Bob", food="lasagna")
    
    # None is an object
    None  # => None
    
    # Don't use the equality "==" symbol to compare objects to None
    # Use "is" instead
    "etc" is None  # => False
    None is None  # => True
    
    # The 'is' operator tests for object identity. This isn't
    # very useful when dealing with primitive values, but is
    # very useful when dealing with objects.
    
    # Any object can be used in a Boolean context.
    # The following values are considered falsey:
    #    - None
    #    - zero of any numeric type (e.g., 0, 0L, 0.0, 0j)
    #    - empty sequences (e.g., '', (), [])
    #    - empty containers (e.g., {}, set())
    #    - instances of user-defined classes meeting certain conditions
    #      see: https://docs.python.org/2/reference/datamodel.html#object.__nonzero__
    #
    # All other values are truthy (using the bool() function on them returns True).
    bool(0)  # => False
    bool("")  # => False
    
    
    ####################################################
    # 2. Variables and Collections
    ####################################################
    
    # Python has a print statement
    print "I'm Python. Nice to meet you!"  # => I'm Python. Nice to meet you!
    
    # Simple way to get input data from console
    input_string_var = raw_input(
        "Enter some data: ")  # Returns the data as a string
    input_var = input("Enter some data: ")  # Evaluates the data as python code
    # Warning: Caution is recommended for input() method usage
    # Note: In python 3, input() is deprecated and raw_input() is renamed to input()
    
    # No need to declare variables before assigning to them.
    some_var = 5  # Convention is to use lower_case_with_underscores
    some_var  # => 5
    
    # Accessing a previously unassigned variable is an exception.
    # See Control Flow to learn more about exception handling.
    some_other_var  # Raises a name error
    
    # if can be used as an expression
    # Equivalent of C's '?:' ternary operator
    "yahoo!" if 3 > 2 else 2  # => "yahoo!"
    
    # Lists store sequences
    li = []
    # You can start with a prefilled list
    other_li = [4, 5, 6]
    
    # Add stuff to the end of a list with append
    li.append(1)  # li is now [1]
    li.append(2)  # li is now [1, 2]
    li.append(4)  # li is now [1, 2, 4]
    li.append(3)  # li is now [1, 2, 4, 3]
    # Remove from the end with pop
    li.pop()  # => 3 and li is now [1, 2, 4]
    # Let's put it back
    li.append(3)  # li is now [1, 2, 4, 3] again.
    
    # Access a list like you would any array
    li[0]  # => 1
    # Assign new values to indexes that have already been initialized with =
    li[0] = 42
    li[0]  # => 42
    li[0] = 1  # Note: setting it back to the original value
    # Look at the last element
    li[-1]  # => 3
    
    # Looking out of bounds is an IndexError
    li[4]  # Raises an IndexError
    
    # You can look at ranges with slice syntax.
    # (It's a closed/open range for you mathy types.)
    li[1:3]  # => [2, 4]
    # Omit the beginning
    li[2:]  # => [4, 3]
    # Omit the end
    li[:3]  # => [1, 2, 4]
    # Select every second entry
    li[::2]  # =>[1, 4]
    # Reverse a copy of the list
    li[::-1]  # => [3, 4, 2, 1]
    # Use any combination of these to make advanced slices
    # li[start:end:step]
    
    # Remove arbitrary elements from a list with "del"
    del li[2]  # li is now [1, 2, 3]
    
    # You can add lists
    li + other_li  # => [1, 2, 3, 4, 5, 6]
    # Note: values for li and for other_li are not modified.
    
    # Concatenate lists with "extend()"
    li.extend(other_li)  # Now li is [1, 2, 3, 4, 5, 6]
    
    # Remove first occurrence of a value
    li.remove(2)  # li is now [1, 3, 4, 5, 6]
    li.remove(2)  # Raises a ValueError as 2 is not in the list
    
    # Insert an element at a specific index
    li.insert(1, 2)  # li is now [1, 2, 3, 4, 5, 6] again
    
    # Get the index of the first item found
    li.index(2)  # => 1
    li.index(7)  # Raises a ValueError as 7 is not in the list
    
    # Check for existence in a list with "in"
    1 in li  # => True
    
    # Examine the length with "len()"
    len(li)  # => 6
    
    # Tuples are like lists but are immutable.
    tup = (1, 2, 3)
    tup[0]  # => 1
    tup[0] = 3  # Raises a TypeError
    
    # You can do all those list thingies on tuples too
    len(tup)  # => 3
    tup + (4, 5, 6)  # => (1, 2, 3, 4, 5, 6)
    tup[:2]  # => (1, 2)
    2 in tup  # => True
    
    # You can unpack tuples (or lists) into variables
    a, b, c = (1, 2, 3)  # a is now 1, b is now 2 and c is now 3
    d, e, f = 4, 5, 6  # you can leave out the parentheses
    # Tuples are created by default if you leave out the parentheses
    g = 4, 5, 6  # => (4, 5, 6)
    # Now look how easy it is to swap two values
    e, d = d, e  # d is now 5 and e is now 4
    
    # Dictionaries store mappings
    empty_dict = {}
    # Here is a prefilled dictionary
    filled_dict = {"one": 1, "two": 2, "three": 3}
    
    # Look up values with []
    filled_dict["one"]  # => 1
    
    # Get all keys as a list with "keys()"
    filled_dict.keys()  # => ["three", "two", "one"]
    # Note - Dictionary key ordering is not guaranteed.
    # Your results might not match this exactly.
    
    # Get all values as a list with "values()"
    filled_dict.values()  # => [3, 2, 1]
    # Note - Same as above regarding key ordering.
    
    # Get all key-value pairs as a list of tuples with "items()"
    filled_dict.items()  # => [("one", 1), ("two", 2), ("three", 3)]
    
    # Check for existence of keys in a dictionary with "in"
    "one" in filled_dict  # => True
    1 in filled_dict  # => False
    
    # Looking up a non-existing key is a KeyError
    filled_dict["four"]  # KeyError
    
    # Use "get()" method to avoid the KeyError
    filled_dict.get("one")  # => 1
    filled_dict.get("four")  # => None
    # The get method supports a default argument when the value is missing
    filled_dict.get("one", 4)  # => 1
    filled_dict.get("four", 4)  # => 4
    # note that filled_dict.get("four") is still => None
    # (get doesn't set the value in the dictionary)
    
    # set the value of a key with a syntax similar to lists
    filled_dict["four"] = 4  # now, filled_dict["four"] => 4
    
    # "setdefault()" inserts into a dictionary only if the given key isn't present
    filled_dict.setdefault("five", 5)  # filled_dict["five"] is set to 5
    filled_dict.setdefault("five", 6)  # filled_dict["five"] is still 5
    
    # Sets store ... well sets (which are like lists but can contain no duplicates)
    empty_set = set()
    # Initialize a "set()" with a bunch of values
    some_set = set([1, 2, 2, 3, 4])  # some_set is now set([1, 2, 3, 4])
    
    # order is not guaranteed, even though it may sometimes look sorted
    another_set = set([4, 3, 2, 2, 1])  # another_set is now set([1, 2, 3, 4])
    
    # Since Python 2.7, {} can be used to declare a set
    filled_set = {1, 2, 2, 3, 4}  # => {1, 2, 3, 4}
    
    # Add more items to a set
    filled_set.add(5)  # filled_set is now {1, 2, 3, 4, 5}
    
    # Do set intersection with &
    other_set = {3, 4, 5, 6}
    filled_set & other_set  # => {3, 4, 5}
    
    # Do set union with |
    filled_set | other_set  # => {1, 2, 3, 4, 5, 6}
    
    # Do set difference with -
    {1, 2, 3, 4} - {2, 3, 5}  # => {1, 4}
    
    # Do set symmetric difference with ^
    {1, 2, 3, 4} ^ {2, 3, 5}  # => {1, 4, 5}
    
    # Check if set on the left is a superset of set on the right
    {1, 2} >= {1, 2, 3}  # => False
    
    # Check if set on the left is a subset of set on the right
    {1, 2} <= {1, 2, 3}  # => True
    
    # Check for existence in a set with in
    2 in filled_set  # => True
    10 in filled_set  # => False
    10 not in filled_set # => True
    
    # Check data type of variable
    type(li)   # => list
    type(filled_dict)   # => dict
    type(5)   # => int
    
    
    ####################################################
    #  3. Control Flow
    ####################################################
    
    # Let's just make a variable
    some_var = 5
    
    # Here is an if statement. Indentation is significant in python!
    # prints "some_var is smaller than 10"
    if some_var > 10:
        print "some_var is totally bigger than 10."
    elif some_var < 10:  # This elif clause is optional.
        print "some_var is smaller than 10."
    else:  # This is optional too.
        print "some_var is indeed 10."
    
    """
    For loops iterate over lists
    prints:
        dog is a mammal
        cat is a mammal
        mouse is a mammal
    """
    for animal in ["dog", "cat", "mouse"]:
        # You can use {0} to interpolate formatted strings. (See above.)
        print "{0} is a mammal".format(animal)
    
    """
    "range(number)" returns a list of numbers
    from zero to the given number
    prints:
        0
        1
        2
        3
    """
    for i in range(4):
        print i
    
    """
    "range(lower, upper)" returns a list of numbers
    from the lower number to the upper number
    prints:
        4
        5
        6
        7
    """
    for i in range(4, 8):
        print i
    
    """
    While loops go until a condition is no longer met.
    prints:
        0
        1
        2
        3
    """
    x = 0
    while x < 4:
        print x
        x += 1  # Shorthand for x = x + 1
    
    # Handle exceptions with a try/except block
    
    # Works on Python 2.6 and up:
    try:
        # Use "raise" to raise an error
        raise IndexError("This is an index error")
    except IndexError as e:
        pass  # Pass is just a no-op. Usually you would do recovery here.
    except (TypeError, NameError):
        pass  # Multiple exceptions can be handled together, if required.
    else:  # Optional clause to the try/except block. Must follow all except blocks
        print "All good!"  # Runs only if the code in try raises no exceptions
    finally:  # Execute under all circumstances
        print "We can clean up resources here"
    
    # Instead of try/finally to cleanup resources you can use a with statement
    with open("myfile.txt") as f:
        for line in f:
            print line
    
    
    ####################################################
    # 4. Functions
    ####################################################
    
    # Use "def" to create new functions
    def add(x, y):
        print "x is {0} and y is {1}".format(x, y)
        return x + y  # Return values with a return statement
    
    
    # Calling functions with parameters
    add(5, 6)  # => prints out "x is 5 and y is 6" and returns 11
    
    # Another way to call functions is with keyword arguments
    add(y=6, x=5)  # Keyword arguments can arrive in any order.
    
    
    # You can define functions that take a variable number of
    # positional args, which will be interpreted as a tuple by using *
    def varargs(*args):
        return args
    
    
    varargs(1, 2, 3)  # => (1, 2, 3)
    
    
    # You can define functions that take a variable number of
    # keyword args, as well, which will be interpreted as a dict by using **
    def keyword_args(**kwargs):
        return kwargs
    
    
    # Let's call it to see what happens
    keyword_args(big="foot", loch="ness")  # => {"big": "foot", "loch": "ness"}
    
    
    # You can do both at once, if you like
    def all_the_args(*args, **kwargs):
        print args
        print kwargs
    
    
    """
    all_the_args(1, 2, a=3, b=4) prints:
        (1, 2)
        {"a": 3, "b": 4}
    """
    
    # When calling functions, you can do the opposite of args/kwargs!
    # Use * to expand positional args and use ** to expand keyword args.
    args = (1, 2, 3, 4)
    kwargs = {"a": 3, "b": 4}
    all_the_args(*args)  # equivalent to all_the_args(1, 2, 3, 4)
    all_the_args(**kwargs)  # equivalent to all_the_args(a=3, b=4)
    all_the_args(*args, **kwargs)  # equivalent to all_the_args(1, 2, 3, 4, a=3, b=4)
    
    
    # you can pass args and kwargs along to other functions that take args/kwargs
    # by expanding them with * and ** respectively
    def pass_all_the_args(*args, **kwargs):
        all_the_args(*args, **kwargs)
        print varargs(*args)
        print keyword_args(**kwargs)
    
    
    # Function Scope
    x = 5
    
    
    def set_x(num):
        # Local var x not the same as global variable x
        x = num  # => 43
        print x  # => 43
    
    
    def set_global_x(num):
        global x
        print x  # => 5
        x = num  # global var x is now set to 6
        print x  # => 6
    
    
    set_x(43)
    set_global_x(6)
    
    
    # Python has first class functions
    def create_adder(x):
        def adder(y):
            return x + y
    
        return adder
    
    
    add_10 = create_adder(10)
    add_10(3)  # => 13
    
    # There are also anonymous functions
    (lambda x: x > 2)(3)  # => True
    (lambda x, y: x ** 2 + y ** 2)(2, 1)  # => 5
    
    # There are built-in higher order functions
    map(add_10, [1, 2, 3])  # => [11, 12, 13]
    map(max, [1, 2, 3], [4, 2, 1])  # => [4, 2, 3]
    
    filter(lambda x: x > 5, [3, 4, 5, 6, 7])  # => [6, 7]
    
    # We can use list comprehensions for nice maps and filters
    [add_10(i) for i in [1, 2, 3]]  # => [11, 12, 13]
    [x for x in [3, 4, 5, 6, 7] if x > 5]  # => [6, 7]
    
    # You can construct set and dict comprehensions as well.
    {x for x in 'abcddeef' if x in 'abc'}  # => {'a', 'b', 'c'}
    {x: x ** 2 for x in range(5)}  # => {0: 0, 1: 1, 2: 4, 3: 9, 4: 16}
    
    
    ####################################################
    # 5. Classes
    ####################################################
    
    # We subclass from object to get a class.
    class Human(object):
        # A class attribute. It is shared by all instances of this class
        species = "H. sapiens"
    
        # Basic initializer, this is called when this class is instantiated.
        # Note that the double leading and trailing underscores denote objects
        # or attributes that are used by python but that live in user-controlled
        # namespaces. You should not invent such names on your own.
        def __init__(self, name):
            # Assign the argument to the instance's name attribute
            self.name = name
    
            # Initialize property
            self.age = 0
    
        # An instance method. All methods take "self" as the first argument
        def say(self, msg):
            return "{0}: {1}".format(self.name, msg)
    
        # A class method is shared among all instances
        # They are called with the calling class as the first argument
        @classmethod
        def get_species(cls):
            return cls.species
    
        # A static method is called without a class or instance reference
        @staticmethod
        def grunt():
            return "*grunt*"
    
        # A property is just like a getter.
        # It turns the method age() into an read-only attribute
        # of the same name.
        @property
        def age(self):
            return self._age
    
        # This allows the property to be set
        @age.setter
        def age(self, age):
            self._age = age
    
        # This allows the property to be deleted
        @age.deleter
        def age(self):
            del self._age
    
    
    # Instantiate a class
    i = Human(name="Ian")
    print i.say("hi")  # prints out "Ian: hi"
    
    j = Human("Joel")
    print j.say("hello")  # prints out "Joel: hello"
    
    # Call our class method
    i.get_species()  # => "H. sapiens"
    
    # Change the shared attribute
    Human.species = "H. neanderthalensis"
    i.get_species()  # => "H. neanderthalensis"
    j.get_species()  # => "H. neanderthalensis"
    
    # Call the static method
    Human.grunt()  # => "*grunt*"
    
    # Update the property
    i.age = 42
    
    # Get the property
    i.age  # => 42
    
    # Delete the property
    del i.age
    i.age  # => raises an AttributeError
    
    ####################################################
    # 6. Modules
    ####################################################
    
    # You can import modules
    import math
    
    print math.sqrt(16)  # => 4
    
    # You can get specific functions from a module
    from math import ceil, floor
    
    print ceil(3.7)  # => 4.0
    print floor(3.7)  # => 3.0
    
    # You can import all functions from a module.
    # Warning: this is not recommended
    from math import *
    
    # You can shorten module names
    import math as m
    
    math.sqrt(16) == m.sqrt(16)  # => True
    # you can also test that the functions are equivalent
    from math import sqrt
    
    math.sqrt == m.sqrt == sqrt  # => True
    
    # Python modules are just ordinary python files. You
    # can write your own, and import them. The name of the
    # module is the same as the name of the file.
    
    # You can find out which functions and attributes
    # defines a module.
    import math
    
    dir(math)
    
    
    # If you have a Python script named math.py in the same
    # folder as your current script, the file math.py will
    # be loaded instead of the built-in Python module.
    # This happens because the local folder has priority
    # over Python's built-in libraries.
    
    
    ####################################################
    # 7. Advanced
    ####################################################
    
    # Generators
    # A generator "generates" values as they are requested instead of storing
    # everything up front
    
    # The following method (*NOT* a generator) will double all values and store it
    # in `double_arr`. For large size of iterables, that might get huge!
    def double_numbers(iterable):
        double_arr = []
        for i in iterable:
            double_arr.append(i + i)
        return double_arr
    
    
    # Running the following would mean we'll double all values first and return all
    # of them back to be checked by our condition
    for value in double_numbers(range(1000000)):  # `test_non_generator`
        print value
        if value > 5:
            break
    
    
    # We could instead use a generator to "generate" the doubled value as the item
    # is being requested
    def double_numbers_generator(iterable):
        for i in iterable:
            yield i + i
    
    
    # Running the same code as before, but with a generator, now allows us to iterate
    # over the values and doubling them one by one as they are being consumed by
    # our logic. Hence as soon as we see a value > 5, we break out of the
    # loop and don't need to double most of the values sent in (MUCH FASTER!)
    for value in double_numbers_generator(xrange(1000000)):  # `test_generator`
        print value
        if value > 5:
            break
    
    # BTW: did you notice the use of `range` in `test_non_generator` and `xrange` in `test_generator`?
    # Just as `double_numbers_generator` is the generator version of `double_numbers`
    # We have `xrange` as the generator version of `range`
    # `range` would return back and array with 1000000 values for us to use
    # `xrange` would generate 1000000 values for us as we request / iterate over those items
    
    # Just as you can create a list comprehension, you can create generator
    # comprehensions as well.
    values = (-x for x in [1, 2, 3, 4, 5])
    for x in values:
        print(x)  # prints -1 -2 -3 -4 -5 to console/terminal
    
    # You can also cast a generator comprehension directly to a list.
    values = (-x for x in [1, 2, 3, 4, 5])
    gen_to_list = list(values)
    print(gen_to_list)  # => [-1, -2, -3, -4, -5]
    
    # Decorators
    # A decorator is a higher order function, which accepts and returns a function.
    # Simple usage example – add_apples decorator will add 'Apple' element into
    # fruits list returned by get_fruits target function.
    def add_apples(func):
        def get_fruits():
            fruits = func()
            fruits.append('Apple')
            return fruits
        return get_fruits
    
    @add_apples
    def get_fruits():
        return ['Banana', 'Mango', 'Orange']
    
    # Prints out the list of fruits with 'Apple' element in it:
    # Banana, Mango, Orange, Apple
    print ', '.join(get_fruits())
    
    # in this example beg wraps say
    # Beg will call say. If say_please is True then it will change the returned
    # message
    from functools import wraps
    
    
    def beg(target_function):
        @wraps(target_function)
        def wrapper(*args, **kwargs):
            msg, say_please = target_function(*args, **kwargs)
            if say_please:
                return "{} {}".format(msg, "Please! I am poor :(")
            return msg
    
        return wrapper
    
    
    @beg
    def say(say_please=False):
        msg = "Can you buy me a beer?"
        return msg, say_please
    
    
    print say()  # Can you buy me a beer?
    print say(say_please=True)  # Can you buy me a beer? Please! I am poor :(
    

      




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  • 原文地址:https://www.cnblogs.com/iupoint/p/9620130.html
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